|
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
|
| Volume 41 - Issue 9 |
| Published: March 2012 |
| Authors: S. L. Pandharipande, Anish M. Shah, Heena Tabassum |
10.5120/5570-7663
|
S. L. Pandharipande, Anish M. Shah, Heena Tabassum . Artificial Neural Network Modeling for Estimation of Composition of a Ternary Liquid Mixture with its Physical Properties such as Refractive Index, pH and Conductivity. International Journal of Computer Applications. 41, 9 (March 2012), 23-26. DOI=10.5120/5570-7663
@article{ 10.5120/5570-7663,
author = { S. L. Pandharipande,Anish M. Shah,Heena Tabassum },
title = { Artificial Neural Network Modeling for Estimation of Composition of a Ternary Liquid Mixture with its Physical Properties such as Refractive Index, pH and Conductivity },
journal = { International Journal of Computer Applications },
year = { 2012 },
volume = { 41 },
number = { 9 },
pages = { 23-26 },
doi = { 10.5120/5570-7663 },
publisher = { Foundation of Computer Science (FCS), NY, USA }
}
%0 Journal Article
%D 2012
%A S. L. Pandharipande
%A Anish M. Shah
%A Heena Tabassum
%T Artificial Neural Network Modeling for Estimation of Composition of a Ternary Liquid Mixture with its Physical Properties such as Refractive Index, pH and Conductivity%T
%J International Journal of Computer Applications
%V 41
%N 9
%P 23-26
%R 10.5120/5570-7663
%I Foundation of Computer Science (FCS), NY, USA
The analysis of a ternary mixture can be done by using analytical instruments like TLC, GLC, HPLC, GC etc. which is time consuming & expensive. In the present work Artificial neural network modeling has been applied to estimate composition of a ternary liquid mixture with its physical properties such as refractive index, pH & conductivity. The work is extended in developing ANN model for estimation of composition of a known ternary mixture for the experimentally determined physical properties, refractive index, pH & conductivity. Samples having known compositions of a ternary liquid mixture, acetic acid-water-ethanol have been prepared & analysed for the physical properties, refractive index, pH & conductivity. ANN models 1 & 2 with different topologies have been developed based on the generated data. The predicted & the actual values using ANN models 1 & 2 have been compared based on the % relative error. The novel feature of this work has been the development of ANN model 1 with the accuracy of prediction between 0-3 % for output parameter, mole % water & 0-5% for output parameter, mole % acetic acid for training data set & ANN model 1 having accuracy level of 0-10% for output parameter, mole % water & 0-3% for output parameter, mole % acetic acid for test data set.